% File src/library/stats/man/chisq.test.Rd
% Part of the R package, https://www.R-project.org
% Copyright 1995-2025 R Core Team
% Distributed under GPL 2 or later

\name{chisq.test}
\alias{chisq.test}
\concept{goodness-of-fit}
\title{Pearson's Chi-squared Test for Count Data}
\description{
  \code{chisq.test} performs chi-squared contingency table tests
                    and goodness-of-fit tests.
}
\usage{
chisq.test(x, y = NULL, correct = TRUE,
           p = rep(1/length(x), length(x)), rescale.p = FALSE,
           simulate.p.value = FALSE, B = 2000)
}
\arguments{
  \item{x}{a numeric vector or matrix. \code{x} and \code{y} can also
    both be factors.}
  \item{y}{a numeric vector; ignored if \code{x} is a matrix.  If
    \code{x} is a factor, \code{y} should be a factor of the same length.}
  \item{correct}{a logical indicating whether to apply continuity
    correction when computing the test statistic for 2 by 2 tables: one
    half is subtracted from all \eqn{|O - E|} differences; however, the
    correction will not be bigger than the differences themselves.  No correction
    is done if \code{simulate.p.value = TRUE}.}
  \item{p}{a vector of probabilities of the same length as \code{x}.
    An error is given if any entry of \code{p} is negative.}
  \item{rescale.p}{a logical scalar; if TRUE then \code{p} is rescaled
    (if necessary) to sum to 1.  If \code{rescale.p} is FALSE, and
    \code{p} does not sum to 1, an error is given.}
  \item{simulate.p.value}{a logical indicating whether to compute
    p-values by Monte Carlo simulation.}
  \item{B}{an integer specifying the number of replicates used in the
    Monte Carlo test.}
}
\details{
  If \code{x} is a matrix with one row or column, or if \code{x} is a
  vector and \code{y} is not given, then a \emph{goodness-of-fit test}
  is performed (\code{x} is treated as a one-dimensional
  contingency table).  The entries of \code{x} must be non-negative
  integers.  In this case, the hypothesis tested is whether the
  population probabilities equal those in \code{p}, or are all equal if
  \code{p} is not given.

  If \code{x} is a matrix with at least two rows and columns, it is
  taken as a two-dimensional contingency table: the entries of \code{x}
  must be non-negative integers.  Otherwise, \code{x} and \code{y} must
  be vectors or factors of the same length; cases with missing values
  are removed, the objects are coerced to factors, and the contingency
  table is computed from these.  Then Pearson's chi-squared test is
  performed of the null hypothesis that the joint distribution of the
  cell counts in a 2-dimensional contingency table is the product of the
  row and column marginals.

  If \code{simulate.p.value} is \code{FALSE}, the p-value is computed
  from the asymptotic chi-squared distribution of the test statistic;
  continuity correction is only used in the 2-by-2 case (if \code{correct}
  is \code{TRUE}, the default).  Otherwise the p-value is computed for a
  Monte Carlo test \bibcitep{R:Hope:1968} with \code{B} replicates. The default
  \code{B = 2000} implies a minimum p-value of about 0.0005 (\eqn{1/(B+1)}).

  In the contingency table case, simulation is done by random sampling
  from the set of all contingency tables with given marginals, and works
  only if the marginals are strictly positive.  Continuity correction is
  never used, and the statistic is quoted without it.  Note that this is
  not the usual sampling situation assumed for the chi-squared test but
  rather that for Fisher's exact test.

  In the goodness-of-fit case simulation is done by random sampling from
  the discrete distribution specified by \code{p}, each sample being
  of size \code{n = sum(x)}.  This simulation is done in \R and may be
  slow.
}
\value{
  A list with class \code{"htest"} containing the following
  components:
  \item{statistic}{the value the chi-squared test statistic.}
  \item{parameter}{the degrees of freedom of the approximate
    chi-squared distribution of the test statistic, \code{NA} if the
    p-value is computed by Monte Carlo simulation.}
  \item{p.value}{the p-value for the test.}
  \item{method}{a character string indicating the type of test
    performed, and whether Monte Carlo simulation or continuity
    correction was used.}
  \item{data.name}{a character string giving the name(s) of the data.}
  \item{observed}{the observed counts.}
  \item{expected}{the expected counts under the null hypothesis.}
  \item{residuals}{the Pearson residuals,
    \code{(observed - expected) / sqrt(expected)}.}
  \item{stdres}{standardized residuals,
    \code{(observed - expected) / sqrt(V)}, where \code{V} is the
    residual cell variance \bibcitep{|R:Agresti:2007|section 2.4.5}
    for the case where \code{x} is a matrix, \code{n * p * (1 - p)} otherwise).}
}
\seealso{
  For goodness-of-fit testing, notably of continuous distributions,
  \code{\link{ks.test}}.
}
\source{
  The code for Monte Carlo simulation is a C translation of the Fortran
  algorithm of \bibcitet{R:Patefield:1981}.
}

\references{
  \bibinfo{R:Agresti:2007}{footer}{Page 38.}
  \bibshow{*}
}
\examples{

## From Agresti(2007) p.39
M <- as.table(rbind(c(762, 327, 468), c(484, 239, 477)))
dimnames(M) <- list(gender = c("F", "M"),
                    party = c("Democrat","Independent", "Republican"))
(Xsq <- chisq.test(M))  # Prints test summary
Xsq$observed   # observed counts (same as M)
Xsq$expected   # expected counts under the null
Xsq$residuals  # Pearson residuals
Xsq$stdres     # standardized residuals


## Effect of simulating p-values
x <- matrix(c(12, 5, 7, 7), ncol = 2)
chisq.test(x)$p.value           # 0.4233
chisq.test(x, simulate.p.value = TRUE, B = 10000)$p.value
                                # around 0.29!

## Testing for population probabilities
## Case A. Tabulated data
x <- c(A = 20, B = 15, C = 25)
chisq.test(x)
chisq.test(as.table(x))             # the same
x <- c(89,37,30,28,2)
p <- c(40,20,20,15,5)
try(
chisq.test(x, p = p)                # gives an error
)
chisq.test(x, p = p, rescale.p = TRUE)
                                # works
p <- c(0.40,0.20,0.20,0.19,0.01)
                                # Expected count in category 5
                                # is 1.86 < 5 ==> chi square approx.
chisq.test(x, p = p)            #               maybe doubtful, but is ok!
chisq.test(x, p = p, simulate.p.value = TRUE)

## Case B. Raw data
x <- trunc(5 * runif(100))
chisq.test(table(x))            # NOT 'chisq.test(x)'!
}
\keyword{htest}
\keyword{distribution}
